2 research outputs found

    Parallel Implementation of OpenVX Feature Extraction Functions in Programmable Processing Architecture

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    Aiming at the mass computing and slow speed of serial structure calculation of digital image processing, parallel implementation of underlying feature extraction kernel functions in the latest open source OpenVX specification 1.3 is completed, and the verification is carried out with the self-designed OpenVX programmable parallel processor. In the underlying feature extraction of the image, the basic pixel processing function Color Convert, the local image processing functions Gaussian Filter and Median Filter of OpenVX specification 1.3 are selected for filtering and smoothing. Harris Corners and Canny Edge Detector are selected for feature extraction. By dividing the complex nodes with large amount of computation into several simple nodes, different graph execution models are constructed and mapped on the OpenVX parallel processor to realize image edge detection and feature point extraction respectively. Verilog is used to design the hardware circuit, and the FPGA chip xcvu440-flga-2892-2-e of Xilinx has comprehensively verified that, compared with the serial mapping structure, the parallel acceleration ratio of the selected kernel function on the OpenVX programmable parallel processor can be up to 14.269. Experimental results show that the kernel functions in OpenVX specification 1.3, especially the complex kernel functions, can achieve expected acceleration effect in this parallel processing structure, and the speedup ratio of parallel and serial structures increases linearly

    Global Shipping Container Monitoring Using Machine Learning with Multi-Sensor Hubs and Catadioptric Imaging

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    We describe a framework for global shipping container monitoring using machine learning with multi-sensor hubs and infrared catadioptric imaging. A wireless mesh radio satellite tag architecture provides connectivity anywhere in the world which is a significant improvement to legacy methods. We discuss the design and testing of a low-cost long-wave infrared catadioptric imaging device and multi-sensor hub combination as an intelligent edge computing system that, when equipped with physics-based machine learning algorithms, can interpret the scene inside a shipping container to make efficient use of expensive communications bandwidth. The histogram of oriented gradients and T-channel (HOG+) feature as introduced for human detection on low-resolution infrared catadioptric images is shown to be effective for various mirror shapes designed to give wide volume coverage with controlled distortion. Initial results for through-metal communication with ultrasonic guided waves show promise using the Dynamic Wavelet Fingerprint Technique (DWFT) to identify Lamb waves in a complicated ultrasonic signal
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